topic category
Beyond Demographics: Aligning Role-playing LLM-based Agents Using Human Belief Networks
Chuang, Yun-Shiuan, Studdiford, Zach, Nirunwiroj, Krirk, Goyal, Agam, Frigo, Vincent V., Yang, Sijia, Shah, Dhavan, Hu, Junjie, Rogers, Timothy T.
Creating human-like large language model (LLM) agents is crucial for faithful social simulation. Having LLMs role-play based on demographic information sometimes improves human likeness but often does not. This study assessed whether LLM alignment with human behavior can be improved by integrating information from empirically-derived human belief networks. Using data from a human survey, we estimated a belief network encompassing 18 topics loading on two non-overlapping latent factors. We then seeded LLM-based agents with an opinion on one topic, and assessed the alignment of its expressed opinions on remaining test topics with corresponding human data. Role-playing based on demographic information alone did not align LLM and human opinions, but seeding the agent with a single belief greatly improved alignment for topics related in the belief network, and not for topics outside the network. These results suggest a novel path for human-LLM belief alignment in work seeking to simulate and understand patterns of belief distributions in society.
- Africa > Kenya (0.04)
- North America > United States > Wisconsin > Dane County > Madison (0.04)
- North America > United States > Oregon (0.04)
- (7 more...)
- Law Enforcement & Public Safety > Crime Prevention & Enforcement (1.00)
- Law (1.00)
- Health & Medicine (1.00)
- (3 more...)
Systematic Review on Healthcare Systems Engineering utilizing ChatGPT
Kim, Jungwoo, Lee, Ji-Su, Kim, Huijae, Lee, Taesik
This paper presents an analytical framework for conducting academic reviews in the field of Healthcare Systems Engineering, employing ChatGPT, a state-of-the-art tool among recent language models. We utilized 9,809 abstract paragraphs from conference presentations to systematically review the field. The framework comprises distinct analytical processes, each employing tailored prompts and the systematic use of the ChatGPT API. Through this framework, we organized the target field into 11 topic categories and conducted a comprehensive analysis covering quantitative yearly trends and detailed sub-categories. This effort explores the potential for leveraging ChatGPT to alleviate the burden of academic reviews. Furthermore, it provides valuable insights into the dynamic landscape of Healthcare Systems Engineering research.
- North America > United States (0.28)
- Asia > South Korea > Daejeon > Daejeon (0.04)
- Europe > Switzerland (0.04)
- Overview (1.00)
- Research Report > Experimental Study (0.46)
Bootstrapping Domain Ontologies from Wikipedia: A Uniform Approach
Mirylenka, Daniil (University of Trento) | Passerini, Andrea (University of Trento) | Serafini, Luciano (Fondazione Bruno Kessler)
Building ontologies is a difficult task requiring skills in logics and ontological analysis. Domain experts usually reach as far as organizing a set of concepts into a hierarchy in which the semantics of the relations is under-specified. The categorization of Wikipedia is a huge concept hierarchy of this form, covering a broad range of areas. We propose an automatic method for bootstrapping domain ontologies from the categories of Wikipedia. The method first selects a subset of concepts that are relevant for a given domain. The relevant concepts are subsequently split into classes and individuals, and, finally, the relations between the concepts are classified into subclass_of, instance_of, part_of, and generic related_to. We evaluate our method by generating ontology skeletons for the domains of Computing and Music. The quality of the generated ontologies has been measured against manually built ground truth datasets of several hundred nodes.
- Workflow (0.68)
- Research Report (0.68)
Exploring Social Context for Topic Identification in Short and Noisy Texts
Wang, Xin (Jilin University;Key Laboratory of Symbolic Computation and Knowledge Engineering, Ministry of Education) | Wang, Ying (Changchun Institute of Tech) | Zuo, Wanli (Jilin University) | Cai, Guoyong (Jilin University)
With the pervasion of social media, topic identification in short texts attracts increasing attention in recent years. However, in nature the texts of social media are short and noisy, and the structures are sparse and dynamic, resulting in difficulty to identify topic categories exactly from online social media. Inspired by social science findings that preference consistency and social contagion are observed in social media, we investigate topic identification in short and noisy texts by exploring social context from the perspective of social sciences. In particular, we present a mathematical optimization formulation that incorporates the preference consistency and social contagion theories into a supervised learning method, and conduct feature selection to tackle short and noisy texts in social media, which result in a Sociological framework for Topic Identification (STI). Experimental results on real-world datasets from Twitter and Citation Network demonstrate the effectiveness of the proposed framework. Further experiments are conducted to understand the importance of social context in topic identification.
What Are Tweeters Doing: Recognizing Speech Acts in Twitter
Zhang, Renxian (The Hong Kong Polytechnic University) | Gao, Dehong (The Hong Kong Polytechnic University) | Li, Wenjie (The Hong Kong Polytechnic University)
Speech acts provide good insights into the communicative behavior of tweeters on Twitter. This paper is mainly concerned with speech act recognition in Twitter as a multi-class classification problem, for which we propose a set of word-based and character-based features. Inexpensive, robust and efficient, our method achieves an average F1 score of nearly 0.7 with the existence of much noise in our annotated Twitter data. In view of the deficiency of training data for the task, we experimented extensively with different configurations of training and test data, leading to empirical findings that may provide valuable reference for building benchmark datasets for sustained research on speech act recognition in Twitter.
- Europe > United Kingdom > England > Cambridgeshire > Cambridge (0.14)
- Asia > Japan (0.05)
- Asia > China > Hong Kong (0.05)
- (4 more...)